That is how MIRI imagines a sane developer using just-barely-aligned AI to save the world. You don’t build an open-ended maximizer and unleash it on the world to maximize some quantity that sounds good to you; that sounds insanely difficult. You carve out as many tasks as you can into concrete, verifiable chunks, and you build the weakest and most limited possible AI you can to complete each chunk, to minimize risk. (Though per faul_sname, you’re likely to be pretty limited in how much you can carve up the task, given time will be a major constraint and there may be parts of the task you don’t fully understand at the outset.)
This sounds like a good and reasonable approach, and also not at all like the sort of thing where you’re trying to instill any values at all into an ML system. I would call this “usable and robust tool construction” not “AI alignment”. I expect standard business practice will look something like this: even when using LLMs in a production setting, you generally want to feed it the minimum context to get the results you want, and to have it produce outputs in some strict and usable format.
The world needs some solution to the problem “if AI keeps advancing and more-powerful AI keeps proliferating, eventually someone will destroy the world with it”.
“How can I build a system powerful enough to stop everyone else from doing stuff I don’t like” sounds like more of a capabilities problem than an alignment problem.
I don’t know of a way to leverage AI to solve that problem without the AI being pretty dangerously powerful, so I don’t think AI is going to get us out of this mess unless we make a shocking amount of progress on figuring out how to align more powerful systems
Yeah, this sounds right to me. I expect that there’s a lot of danger inherent in biological gain-of-function research, but I don’t think the solution to that is to create a virus that will infect people and cause symptoms that include “being less likely to research dangerous pathogens”. Similarly, I don’t think “do research on how to make systems that can do their own research even faster” is a promising approach to solve the “some research results can be misused or dangerous” problem.
Thanks for the reply.
This sounds like a good and reasonable approach, and also not at all like the sort of thing where you’re trying to instill any values at all into an ML system. I would call this “usable and robust tool construction” not “AI alignment”. I expect standard business practice will look something like this: even when using LLMs in a production setting, you generally want to feed it the minimum context to get the results you want, and to have it produce outputs in some strict and usable format.
“How can I build a system powerful enough to stop everyone else from doing stuff I don’t like” sounds like more of a capabilities problem than an alignment problem.
Yeah, this sounds right to me. I expect that there’s a lot of danger inherent in biological gain-of-function research, but I don’t think the solution to that is to create a virus that will infect people and cause symptoms that include “being less likely to research dangerous pathogens”. Similarly, I don’t think “do research on how to make systems that can do their own research even faster” is a promising approach to solve the “some research results can be misused or dangerous” problem.